Combined Fully Contactless Finger and Hand Vein Capturing Device with a Corresponding Dataset
Abstract
:1. Introduction
1.1. Acquisition Principle and Capturing Devices
1.2. Related Work
1.3. Main Contributions
- Design of a novel fully contactless combined finger and hand vein capturing device featuring laser modules instead of NIR LEDs, a special NIR enhanced industrial camera with an additional NIR pass-through filter to achieve the best possible image quality, an optimal lens and distance between the finger/hand and the camera to allow for minimal image distortions as well as an automated illumination control to provide a uniform illumination throughout the finger/hand surface and to arrive at the best possible contrast and image quality.
- Publication of all major technical details of the capturing device design—in this work we describe all the major components of the proposed capturing device design. Further technical details are available on request, which makes it easy to reproduce our design.
- Public finger and hand vein image database established with the proposed capturing device—together with this paper we publish the finger and hand vein datasets acquired with the proposed capturing device. These datasets are publicly available free of charge for research purposes and the finger vein one is the first publicly available contactless finger vein recognition dataset. Due to the nature of contactless acquisition, these datasets are challenging in terms of the different types of the finger/hand misplacements they include.
- Evaluation of the acquired database in terms of image quality and biometric recognition performance—the images acquired with our sensor are evaluated using several image quality assessment schemes. Furthermore, some well-established vein recognition methods implemented in our already open source vein recognition framework are utilised to evaluate the finger and hand vein datasets. This ensures full reproducibility of our published results. The achieved recognition performance during our evaluation is competitive with other state-of-the-art finger and hand vein acquisition devices, validate the advantages of our proposed capturing device design and prove the good image quality and recognition performance of our capturing device.
2. Materials and Methods
2.1. Contactless Finger and Hand Vein Acquisition Device
- Reflected light as well as light transmission—it is the first acquisition device of its kind, able to acquire reflected light as well as light transmission images. This extends the range of possible uses of this capturing device and speeds up the acquisition process if both types of illumination set-ups shall be investigated.
- Suitable for finger as well as hand vein images—it is possible to acquire palmar finger as well as hand vein images with the same device. Again, this is the first capturing device able to acquire both using the same device. In the default configuration, finger vein images are captured using light transmission while hand vein images are captured using reflected light but this can be changed in the set-up so there is a high flexibility in terms of possible acquisition configurations.
- NIR laser modules for light transmission illumination—the application of NIR laser modules has not been that common in finger vein recognition so far. In a contactless acquisition set-up, laser modules exhibit several advantages over LEDs, especially if it comes to increased range of finger/hand movement as well as an optimal illumination and image contrast [27]. Hence, we decided to equip our capturing device with NIR laser modules.
- Illumination control board and automated brightness control algorithm—the integrated brightness control board handles the illumination intensity of both, the light transmission and the reflected light illuminators. Each of the laser modules in the light transmission illuminator can be brightness controlled separately and independent from the others. This illumination control in combination with our automated brightness control algorithm enables an optimal image contrast without having the operator do any manual settings.
- Special NIR enhanced industrial camera—our capturing device uses a special NIR enhanced industrial camera. In contrast to modified (NIR blocking filter removed) visible light cameras, those NIR enhanced camera have an increased quantum efficiency in the NIR spectrum. This leads to a higher image contrast and quality compared to cheap, modified visible light cameras.
- Optimal lens set-up and distance between camera and finger/hand—in contrast to many other, mainly smaller devices (in terms of physical size of the device), we decided to use a lens with a focal length of 9 mm. This allows for minimal image distortions all over the image area, especially at the image borders at the cost of an increased distance between the camera and the finger/hand. Hence, our capturing device is rather big compared to others.
- Easy to reproduce design—in contrast to most other proposed capturing devices, for which only very few details are available, we provide references to the data sheets and technical details of all of the capturing device’s parts. Furthermore, we provide the 3D models and technical drawings for the frame parts and the 3D printed parts on request. Hence, it is easy to reproduce our proposed capturing device design.
- Fast data acquisition—due to the automated brightness control and the automated acquisition process, sample data acquisition is fast. Capturing a hand vein image only takes less than a second and capturing a finger vein images takes between 2–4 s once the data subject placed their finger/hand.
- Ease of use during data acquisition—in contrast to other available vein capturing devices, for our proposed device the data subjects do not need to align their fingers/hands with some contact surface or pegs. This is one of the main advantages of our contactless design, making the data acquisition easier for the data subjects as well as for the operators. The automated illumination control algorithm and the intuitive graphical capturing software further contribute to a smooth and easy data acquisition process. Moreover, the integrated touchscreen display assists the data subjects by indicating which finger/hand to place at the sensor, how to place it and indicates potential misplacements.
- Biometric fusion can be employed to increase the recognition performance—our proposed capturing device acquires finger vein images as well as hand vein images using two different wavelengths of illumination. Hence, it is easily possible to increase the recognition performance by applying biometric fusion at sensor level with different fusion combinations. An evaluation of selected combinations is done in Section 3.3.
2.1.1. Camera, Lens and Filter
2.1.2. Light Sources—Reflected Light and Light Transmission
2.1.3. Illumination Control Board and Brightness Control Algorithm
2.1.4. Frame, Housing and Touchscreen
2.2. PLUSVein-Contactless Finger and Hand Vein Data Set
2.3. Finger and Hand Vein Recognition Tool-Chain
- Hand veins 850 nm + hand veins 950 nm
- Hand veins 850 nm + finger veins
- Hand veins 950 nm + finger veins
- Hand veins 850 nm + hand veins 950 nm + finger veins
2.4. Experimental Setup and Evaluation Protocol
3. Results
3.1. Image Quality Assessment
3.2. Recognition Performance
3.3. Biometric Fusion Results
4. Discussion
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
ATM | Automated Teller Machine |
CCD | Charge Coupled Device |
CGF | Circular Gabor Filter |
CLAHE | Contrast Limited Adaptive Histogram Equalisation |
CMOS | Complimentary Metal Oxid Semiconductor |
COTS | Commercial Off The Shelf |
DET | Detection Error Tradeoff |
EER | Equal Error Rate |
FMR | False Match Rate |
FNMR | False Non Match Rate |
HFEF | High Frequency Emphasis Filtering |
LED | Light Emitting Diode |
NFIQ | NIST Fingerprint Image Quality |
NIR | Near Infrared |
NIST | National Institutes of Standards and Technology |
PTFE | Polytetrafluoroethylene |
PWM | Pulse Width Modulation |
ROI | Region Of Interest |
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Dataset | GCF | Wang17 | HSNR | |
---|---|---|---|---|
Finger Vein | Finger Vein | 1.72 | 0.256 | 92.16 |
SDUMLA-HMT [60] | 0.986 | 0.165 | 80.32 | |
HKPU-FID [4] | 1.46 | 0.166 | 88.13 | |
UTFVP [61] | 1.47 | 0.356 | 87.15 | |
MMCBNU_6000 [44] | 1.52 | 0.121 | 87.39 | |
FV-USM [62] | 0.69 | 0.136 | 83.35 | |
PLUSVein-FV3 [27] | 1.48 | 0.306 | 89.78 | |
Hand Vein | Hand Vein 850 nm | 1.42 | 0.682 | 90.43 |
Hand Vein 950 nm | 1.87 | 0.656 | 91.76 | |
Bosphorus Hand Vein [63] | 2.69 | 0.329 | 86.12 | |
Tecnocampus Hand Image [64] | 2.31 | 0.373 | 54.33 | |
Vera Palm Vein [65] | 1.31 | 0.43 | 85.09 | |
PROTECT HandVein [66] | 2.8 | 0.563 | 82.43 |
Modality | MC | PC | GF | SIFT | |
---|---|---|---|---|---|
Finger Vein | EER [%] | 5.61 | 8.22 | 6.63 | 3.66 |
FMR1000 [%] | 13.12 | 23.99 | 18.39 | 16.61 | |
ZeroFMR [%] | 18.75 | 42.19 | 28.76 | 36.11 | |
Hand Vein 850 nm | EER [%] | 0.35 | 0.95 | 1.55 | 0.95 |
FMR1000 [%] | 0.95 | 1.67 | 2.26 | 1.9 | |
ZeroFMR [%] | 1.67 | 2.26 | 2.74 | 2.74 | |
Hand Vein 950 nm | EER [%] | 0.38 | 0.83 | 0.72 | 0.82 |
FMR1000 [%] | 0.59 | 1.43 | 1.19 | 1.67 | |
ZeroFMR [%] | 1.07 | 1.67 | 1.67 | 2.02 |
Combination | MC | RPI | PC | RPI | GF | RPI | SIFT | RPI | ||
---|---|---|---|---|---|---|---|---|---|---|
1 | Hand 850 Hand 950 | EER [%] | 0.24 | 44% | 0.16 | 405% | 0.60 | 19% | 0.37 | 123% |
FMR1000 [%] | 0.36 | 162% | 0.21 | 586% | 0.77 | 54% | 0.65 | 155% | ||
ZeroFMR [%] | 0.70 | 139% | 4.90 | −66% | 0.92 | 82% | 1.49 | 35% | ||
2 | Hand 850 Middle Finger | EER [%] | 0.03 | 1183% | 0.57 | 65% | 0.64 | 144% | 0.48 | 98% |
FMR1000 [%] | 0.01 | 7862% | 0.97 | 71% | 1.19 | 90% | 0.52 | 268% | ||
ZeroFMR [%] | 0.14 | 1112% | 1.32 | 72% | 1.70 | 61% | 0.79 | 246% | ||
3 | Hand 950 Middle Finger | EER [%] | 0.14 | 171% | 0.37 | 122% | 0.48 | 50% | 0.26 | 218% |
FMR1000 [%] | 0.14 | 333% | 0.71 | 102% | 0.74 | 61% | 0.37 | 352% | ||
ZeroFMR [%] | 0.28 | 289% | 1.28 | 30% | 1.11 | 51% | 2.35 | −14% | ||
4 | Hand 850 Hand 950 Middle Finger | EER [%] | 0.04 | 849% | 0.22 | 272% | 0.57 | 26% | 0.20 | 311% |
FMR1000 [%] | 0.00 | - | 0.36 | 298% | 0.62 | 91% | 0.30 | 449% | ||
ZeroFMR [%] | 0.17 | 861% | 11.47 | −85% | 0.74 | 127% | 2.08 | −3% |
Name and Reference | Images/Subjects | cla | Feature Type | Performance (EER) | Year |
---|---|---|---|---|---|
PKU [72] | 50,700/5208 | no | WLD [72] | 0.87% | 2008 |
THU-FVFDT [73] | 6540/610 | no | MLD [73] | 98.3% ident. rate | 2009 |
SDUMLA-HMT [60] | 3816/106 | no | Minutia [74] | 98.5% recogn. rate | 2010 |
HKPU-FID [4] | 6264/156 | no | Gabor Filter [4] | 0.43% (veins only) | 2011 |
UTFVP [61] | 1440/60 | no | MC [49] | 0.4% | 2013 |
MMCBNU_6000 [44] | 6000/100 | no | - | - | 2013 |
CFVD [75] | 1345/13 | - | - | - | 2013 |
FV-USM [62] | 5940/123 | no | POC and CD [62] | 3.05% | 2013 |
VERA FV-Spoof [76,77] | 440/110 | no | MC [49] | 6.2% | 2014 |
PMMDB-FV [26] | 240/20 | no | MC [49] | 9.75% | 2017 |
PLUSVein-FV3 [27] | 3600/60 | no | MC [49] | 0.06% | 2018 |
Contactless FingerVein | 840/42 | yes | MC [49] | 3.66% | 2019 |
Name and Reference | Images/Subjects | cla | Feature Type | Performance (EER) | Year |
---|---|---|---|---|---|
CIE [18] | 2400/50 | no | Thresholding [78] | 1.1% | 2011 |
Bosphorus Hand Vein [63] | 1575/100 | no | Geometry [79] | 2.25% | 2011 |
CASIA Multispectral [21] | 7200/100 | no | LBP/LDP [80] | 0.09% | 2011 |
Tecnocampus Hand Image [64] | 6000/100 | no | BDM [64] | 98% recogn. rate | 2013 |
Vera Palm Vein [65] | 2200/110 | no | LBP [81] | 3.75% | 2015 |
PROTECT HandVein [66] | 2400/40 | no | SIFT [51] | 0.093% | 2018 |
PROTECT Mobile HandVein [25] | 920/31 | yes | MC [49] | 4.13% | 2018 |
Contactless HandVein | 420/42 | yes | MC [49] | 0.35% | 2019 |
© 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
Share and Cite
Kauba, C.; Prommegger, B.; Uhl, A. Combined Fully Contactless Finger and Hand Vein Capturing Device with a Corresponding Dataset. Sensors 2019, 19, 5014. https://doi.org/10.3390/s19225014
Kauba C, Prommegger B, Uhl A. Combined Fully Contactless Finger and Hand Vein Capturing Device with a Corresponding Dataset. Sensors. 2019; 19(22):5014. https://doi.org/10.3390/s19225014
Chicago/Turabian StyleKauba, Christof, Bernhard Prommegger, and Andreas Uhl. 2019. "Combined Fully Contactless Finger and Hand Vein Capturing Device with a Corresponding Dataset" Sensors 19, no. 22: 5014. https://doi.org/10.3390/s19225014
APA StyleKauba, C., Prommegger, B., & Uhl, A. (2019). Combined Fully Contactless Finger and Hand Vein Capturing Device with a Corresponding Dataset. Sensors, 19(22), 5014. https://doi.org/10.3390/s19225014